CF3: Compact and Fast 3D Feature Fields
By: Hyunjoon Lee, Joonkyu Min, Jaesik Park
Potential Business Impact:
Makes 3D pictures from photos much faster.
Plain English Summary
Imagine you want to create a realistic 3D model of something from a bunch of photos. This new method makes that process much faster and uses way less computer power. It's like getting a super detailed 3D model without needing a super-powered computer or waiting forever. This could lead to more amazing virtual worlds and realistic digital creations that are easier and cheaper to make.
3D Gaussian Splatting (3DGS) has begun incorporating rich information from 2D foundation models. However, most approaches rely on a bottom-up optimization process that treats raw 2D features as ground truth, incurring increased computational costs. We propose a top-down pipeline for constructing compact and fast 3D Gaussian feature fields, namely, CF3. We first perform a fast weighted fusion of multi-view 2D features with pre-trained Gaussians. This approach enables training a per-Gaussian autoencoder directly on the lifted features, instead of training autoencoders in the 2D domain. As a result, the autoencoder better aligns with the feature distribution. More importantly, we introduce an adaptive sparsification method that optimizes the Gaussian attributes of the feature field while pruning and merging the redundant Gaussians, constructing an efficient representation with preserved geometric details. Our approach achieves a competitive 3D feature field using as little as 5% of the Gaussians compared to Feature-3DGS.
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